Results for 'decision support systems'

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  1. Decision support systems and its role in developing the universities strategic management: Islamic university in Gaza as a case study.Mazen J. Al Shobaki & Samy S. Abu Naser - 2016 - International Journal of Advanced Research and Development 1 (10):33-47.
    This paper aims to identify the decision support systems and their role on the strategic management development in the Universities- Case Study: Islamic University of Gaza. The descriptive approach was used where a questionnaire was developed and distributed to a stratified random sample. (230) questionnaires were distributed and (204) were returned with response rate (88.7%). The most important findings of the study: The presence of a statistically significant positive correlation between the decision support systems (...)
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  2.  9
    Decision Support System for Prioritizing Self-Assurance of Academic Writing Based on Applied Linguistics.Yancheng Yang & Shah Nazir - 2022 - Frontiers in Psychology 13.
    Based on applied linguistics, this study looked at the decision support system for emphasizing self-assurance in academic writing. From a generic perspective, academic writing has been considered both a process and a product. It has highlighted the planning composite processes, editing, composing, revising, and assessment, which depend upon the familiarity of someone with confidence in their capability for engagement in these activities. As a product, it has focused on the writing results through the product’s characteristics. These contain specific (...)
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  3.  63
    A decision support system for the graph model of conflicts.D. Marc Kilgour, Liping Fang & Keith W. Hipel - 1990 - Theory and Decision 28 (3):289-311.
  4. A study of decision support system application in new.Chi-Tung Leung & 梁志彤 - 1991 - Analysis 51 (5).
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  5.  8
    Intelligent decision support system approach for predicting the performance of students based on three-level machine learning technique.Li-li Wang, Fang XianWen & Sohaib Latif - 2021 - Journal of Intelligent Systems 30 (1):739-749.
    In this research work, a user-friendly decision support framework is developed to analyze the behavior of Pakistani students in academics. The purpose of this article is to analyze the performance of the Pakistani students using an intelligent decision support system (DSS) based on the three-level machine learning (ML) technique. The neural network used a three-level classifier approach for the prediction of Pakistani student achievement. A self-recorded dataset of 1,011 respondents of graduate students of English and Physics (...)
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  6.  17
    Decision Support System for Blockage Management in Fire Service.Adam Krasuski & Karol Kreński - 2014 - Studies in Logic, Grammar and Rhetoric 37 (1):107-123.
    In this article we present the foundations of a decision support system for blockage management in Fire Service. Blockage refers to the situation when all fire units are out and a new incident occurs. The approach is based on two phases: off-line data preparation and online blockage estimation. The off-line phase consists of methods from data mining and natural language processing and results in semantically coherent information granules. The online phase is about building the probabilistic models that estimate (...)
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  7.  27
    Computer Decision-Support Systems for Public Argumentation: Criteria for Assessment.Willaim Rheg, Peter Mcburney & Simon Parsons - unknown
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  8. Clinical Decision Support Systems.Kazem Sadegh-Zadeh - 2nd ed. 2015 - In Handbook of Analytic Philosophy of Medicine. Springer Verlag.
     
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  9. Intelligent Decision Support System, Kiev.G. Setlak - forthcoming - Logos. Anales Del Seminario de Metafísica [Universidad Complutense de Madrid, España].
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  10.  75
    Decision support systems for police: Lessons from the application of data mining techniques to “soft” forensic evidence. [REVIEW]Giles Oatley, Brian Ewart & John Zeleznikow - 2006 - Artificial Intelligence and Law 14 (1-2):35-100.
    The paper sets out the challenges facing the Police in respect of the detection and prevention of the volume crime of burglary. A discussion of data mining and decision support technologies that have the potential to address these issues is undertaken and illustrated with reference the authors’ work with three Police Services. The focus is upon the use of “soft” forensic evidence which refers to modus operandi and the temporal and geographical features of the crime, rather than “hard” (...)
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  11. Computer decision-support systems for public argumentation: assessing deliberative legitimacy. [REVIEW]William Rehg, Peter McBurney & Simon Parsons - 2005 - AI and Society 19 (3):203-228.
    Recent proposals for computer-assisted argumentation have drawn on dialectical models of argumentation. When used to assist public policy planning, such systems also raise questions of political legitimacy. Drawing on deliberative democratic theory, we elaborate normative criteria for deliberative legitimacy and illustrate their use for assessing two argumentation systems. Full assessment of such systems requires experiments in which system designers draw on expertise from the social sciences and enter into the policy deliberation itself at the level of participants.
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  12.  17
    AI-driven decision support systems and epistemic reliance: a qualitative study on obstetricians’ and midwives’ perspectives on integrating AI-driven CTG into clinical decision making.Rachel Dlugatch, Antoniya Georgieva & Angeliki Kerasidou - 2024 - BMC Medical Ethics 25 (1):1-11.
    Background Given that AI-driven decision support systems (AI-DSS) are intended to assist in medical decision making, it is essential that clinicians are willing to incorporate AI-DSS into their practice. This study takes as a case study the use of AI-driven cardiotography (CTG), a type of AI-DSS, in the context of intrapartum care. Focusing on the perspectives of obstetricians and midwives regarding the ethical and trust-related issues of incorporating AI-driven tools in their practice, this paper explores the (...)
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  13.  7
    Making sense of decision support systems: Rationales, translations and potentials for critical reflections on the reality of child protection.Maria Appel Nissen & Andreas Møller Jørgensen - 2022 - Big Data and Society 9 (2).
    Decision support systems, which incorporate artificial intelligence and big data, are receiving significant attention in the public sector. Decision support systems are sociocultural artefacts that are subject to a mix of technical and political choices, and critical investigation of these choices and the rationales they reflect are paramount since they are inscribed into and may cause harm, violate fundamental rights and reproduce negative social patterns. Applying and merging the concepts of sense-making and translation, this (...)
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  14.  37
    Use of a clinical decision support system to increase osteoporosis screening.Ramona S. DeJesus - 2012 - Journal of Evaluation in Clinical Practice 18 (4):926-926.
  15.  70
    A moral analysis of intelligent decision-support systems in diagnostics through the lens of Luciano Floridi’s information ethics.Dmytro Mykhailov - 2021 - Human Affairs 31 (2):149-164.
    Contemporary medical diagnostics has a dynamic moral landscape, which includes a variety of agents, factors, and components. A significant part of this landscape is composed of information technologies that play a vital role in doctors’ decision-making. This paper focuses on the so-called Intelligent Decision-Support System that is widely implemented in the domain of contemporary medical diagnosis. The purpose of this article is twofold. First, I will show that the IDSS may be considered a moral agent in the (...)
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  16.  95
    The evolution of group decision support systems to enable collaborative authoring of outcomes.Patrick Humphreys & Garrick Jones - 2006 - World Futures 62 (3):193 – 222.
    This article draws on analysis of a variety of problems emerging from practical applications of Group Decision Support Systems (GDSS) to propose a fundamental evolution of decision support models from the traditional single decision-spine model to the decision-hedgehog. It positions decision making through the construction of narratives making the rhizome that constitutes the body of the hedgehog with the fundamental aim of enriching understanding of the contexts of decision making. Localized processes (...)
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  17.  21
    Towards a Multiagent Decision Support System for Crisis Management.Frédéric Serin & Fahem Kebair - 2011 - Journal of Intelligent Systems 20 (1):47-60.
    Crisis management is a complex problem raised by the scientific community currently. Decision support systems are a suitable solution for such issues, they are indeed able to help emergency managers to prevent and to manage crisis in emergency situations. However, they should be enough flexible and adaptive in order to be efficient to solve complex problems that are plunged in dynamic and unpredictable environments. The approach we propose in this paper addresses this challenge. First, we expose a (...)
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  18. Developing negotiation decision support systems that support mediators: A case study of the family_winner system. [REVIEW]Emilia Bellucci & John Zeleznikow - 2005 - Artificial Intelligence and Law 13 (2):233-271.
    Negotiation Support Systems have traditionally modelled the process of negotiation. They often rely on mathematical optimisation techniques and ignore heuristics and other methods derived from practice. Our goal is to develop systems capable of decision support to help resolve a given dispute. A system we have constructed, Family_Winner, uses empirical evidence to dynamically modify initial preferences throughout the negotiation process. It sequentially allocates issues using trade-offs and compensation opportunities inherent in the dispute.
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  19.  71
    Primer on an ethics of AI-based decision support systems in the clinic.Matthias Braun, Patrik Hummel, Susanne Beck & Peter Dabrock - 2021 - Journal of Medical Ethics 47 (12):3-3.
    Making good decisions in extremely complex and difficult processes and situations has always been both a key task as well as a challenge in the clinic and has led to a large amount of clinical, legal and ethical routines, protocols and reflections in order to guarantee fair, participatory and up-to-date pathways for clinical decision-making. Nevertheless, the complexity of processes and physical phenomena, time as well as economic constraints and not least further endeavours as well as achievements in medicine and (...)
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  20. A case‐based decision support system for individual stress diagnosis using fuzzy similarity matching.Shahina Begum, Mobyen Uddin Ahmed, Peter Funk, Ning Xiong & Bo Von Schéele - 2009 - In L. Magnani (ed.), Computational Intelligence. pp. 180-195.
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  21.  10
    A Modular Neural Network Decision Support System in EMG Diagnosis.C. I. Christodoulou, C. S. Pattichis & W. F. Fincham - 1998 - Journal of Intelligent Systems 8 (1-2):99-144.
  22.  45
    Use of a clinical decision support system to increase osteoporosis screening: how similar is the historical control?Anis Fuad, Ajit Kumar, Yao-Chin Wang & Chien-Yeh Hsu - 2012 - Journal of Evaluation in Clinical Practice 18 (4):925-925.
  23.  32
    Development of a decision support system for assessing farm animal welfare in relation to husbandry systems: Strategy and prototype. [REVIEW]M. B. M. Bracke, J. H. M. Metz, A. A. Dijkhuizen & B. M. Spruijt - 2001 - Journal of Agricultural and Environmental Ethics 14 (3):321-337.
    Due to increasing empiricalinformation on farm animal welfare since the1960s, the prospects for sound decisionmakingconcerning welfare have improved. This paperdescribes a strategy to develop adecision-making aid, a decision support system,for assessment of farm-animal welfare based onavailable scientific knowledge. Such a decisionsupport system allows many factors to be takeninto account. It is to be developed accordingto the Evolutionary Prototyping Method, inwhich an initial prototype is improved inreiterative updating cycles. This initialprototype has been constructed. It useshierarchical representations to analysescientific statements (...)
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  24.  58
    An australian perspective on research and development required for the construction of applied legal decision support systems.John Zeleznikow - 2002 - Artificial Intelligence and Law 10 (4):237-260.
    At the Donald Berman Laboratory for Information Technology and Law, La TrobeUniversity Australia, we have been building legal decision support systems for a dozenyears. Whilst most of our energy has been devoted to conducting research in ArtificialIntelligence and Law, over the past few years we have increasingly focused uponbuilding legal decision support systems that have a commercial focus.In this paper we discuss the evolution of our systems. We begin with a discussion ofrule-based (...) and discuss the transition to hybrid rule-based/case-based systems.We next discuss how we have used machine learning in building legal decision supportsystems. Our focus on using machine learning led us to investigate the domains ofexplanation and argumentation. We conclude by discussing our current work onbuilding negotiation support systems and tools for constructing web-based legaldecision support systems. (shrink)
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  25.  13
    Responsibility and decision-making authority in using clinical decision support systems: an empirical-ethical exploration of German prospective professionals preferences and concerns.Florian Funer, Wenke Liedtke, Sara Tinnemeyer, Andrea Diana Klausen, Diana Schneider, Helena U. Zacharias, Martin Langanke & Sabine Salloch - 2023 - Journal of Medical Ethics 50 (1):6-11.
    Machine learning-driven clinical decision support systems (ML-CDSSs) seem impressively promising for future routine and emergency care. However, reflection on their clinical implementation reveals a wide array of ethical challenges. The preferences, concerns and expectations of professional stakeholders remain largely unexplored. Empirical research, however, may help to clarify the conceptual debate and its aspects in terms of their relevance for clinical practice. This study explores, from an ethical point of view, future healthcare professionals’ attitudes to potential changes of (...)
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  26.  41
    “Many roads lead to Rome and the Artificial Intelligence only shows me one road”: an interview study on physician attitudes regarding the implementation of computerised clinical decision support systems.Sigrid Sterckx, Tamara Leune, Johan Decruyenaere, Wim Van Biesen & Daan Van Cauwenberge - 2022 - BMC Medical Ethics 23 (1):1-14.
    Research regarding the drivers of acceptance of clinical decision support systems by physicians is still rather limited. The literature that does exist, however, tends to focus on problems regarding the user-friendliness of CDSS. We have performed a thematic analysis of 24 interviews with physicians concerning specific clinical case vignettes, in order to explore their underlying opinions and attitudes regarding the introduction of CDSS in clinical practice, to allow a more in-depth analysis of factors underlying acceptance of CDSS. (...)
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  27.  13
    Reflection Machines: Supporting Effective Human Oversight Over Medical Decision Support Systems.Pim Haselager, Hanna Schraffenberger, Serge Thill, Simon Fischer, Pablo Lanillos, Sebastiaan van de Groes & Miranda van Hooff - forthcoming - Cambridge Quarterly of Healthcare Ethics:1-10.
    Human decisions are increasingly supported by decision support systems (DSS). Humans are required to remain “on the loop,” by monitoring and approving/rejecting machine recommendations. However, use of DSS can lead to overreliance on machines, reducing human oversight. This paper proposes “reflection machines” (RM) to increase meaningful human control. An RM provides a medical expert not with suggestions for a decision, but with questions that stimulate reflection about decisions. It can refer to data points or suggest counterarguments (...)
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  28.  39
    Concordance as evidence in the Watson for Oncology decision-support system.Aaro Tupasela & Ezio Di Nucci - 2020 - AI and Society 35 (4):811-818.
    Machine learning platforms have emerged as a new promissory technology that some argue will revolutionize work practices across a broad range of professions, including medical care. During the past few years, IBM has been testing its Watson for Oncology platform at several oncology departments around the world. Published reports, news stories, as well as our own empirical research show that in some cases, the levels of concordance over recommended treatment protocols between the platform and human oncologists have been quite low. (...)
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  29.  53
    Extending the Reach of Collective Decision Support Systems: Provisions for Disciplining Judgment-Driven Exercises.John W. Sutherland - 2000 - Theory and Decision 48 (1):1-46.
    The focus here is on analytical and instrumental requirements for those collective decision exercises that lend themselves to a judgment-driven resolution. These have not as yet received much concerted technical attention from either of the two main movements in the field. They remain somewhere beyond the purview of the objectively-predicated instruments that mainstream GDSS (Group Decision Support System) designs tend to favour. Yet neither are they so inherently ill-structured as the situations with which the GDNSS (Group (...) and Negotiation Support System) community is concerned, these usually allowing only a subjectively-predicated, compromisive or consensus-based conclusion. If the technical requirements peculiar to judgment-driven decision exercises are to be well met, it will be through the offices of analytical instruments that can help assure the rationality of the resolutions at which they arrive. The primary purpose of these pages is to offer some suggestions about the types of analytical instruments that might serve this end. (shrink)
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  30.  13
    Reflection machines: increasing meaningful human control over Decision Support Systems.W. F. G. Haselager, H. K. Schraffenberger, R. J. M. van Eerdt & N. A. J. Cornelissen - 2022 - Ethics and Information Technology 24 (2).
    Rapid developments in Artificial Intelligence are leading to an increasing human reliance on machine decision making. Even in collaborative efforts with Decision Support Systems (DSSs), where a human expert is expected to make the final decisions, it can be hard to keep the expert actively involved throughout the decision process. DSSs suggest their own solutions and thus invite passive decision making. To keep humans actively ‘on’ the decision-making loop and counter overreliance on machines, (...)
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  31.  57
    RuleRS: a rule-based architecture for decision support systems.Mohammad Badiul Islam & Guido Governatori - 2018 - Artificial Intelligence and Law 26 (4):315-344.
    Decision-makers in governments, enterprises, businesses and agencies or individuals, typically, make decisions according to various regulations, guidelines and policies based on existing records stored in various databases, in particular, relational databases. To assist decision-makers, an expert system, encompasses interactive computer-based systems or subsystems to support the decision-making process. Typically, most expert systems are built on top of transaction systems, databases, and data models and restricted in decision-making to the analysis, processing and presenting (...)
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  32.  51
    Current research in moral development as a decision support system.William Y. Penn & Boyd D. Collier - 1985 - Journal of Business Ethics 4 (2):131 - 136.
    This paper argues that human beings possess the rational capabilities necessary to achieve the goal of more just and peaceable social orders, but that our educational institutions are failing in their responsibility to do what in fact can be done to produce graduates who make decisions in ways most likely to achieve this goal.Data compiled by us, consistent with other research, indicates that only a small percentage of the individuals graduating from universities and professional schools have developed the capacity for (...)
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  33.  23
    Use of a Web-based clinical decision support system to improve abdominal aortic aneurysm screening in a primary care practice.Rajeev Chaudhry, Sidna M. Tulledge-Scheitel, Doug A. Parks, Kurt B. Angstman, Lindsay K. Decker & Robert J. Stroebel - 2012 - Journal of Evaluation in Clinical Practice 18 (3):666-670.
  34.  2
    Performing Users: The Case of a Computer-Based Dairy Decision-Support System.Vaughan Higgins - 2007 - Science, Technology, and Human Values 32 (3):263-286.
    This article draws on the concept of “performance” to argue for greater recognition of preexisting practices in the configuration of users. Through an Australian case study of a computer-based dairy decision-support system introduced via a two-day workshop to participating farmers, the article examines the assembling of imputed farmer users in the design of the software. It then explores how the designer and trainers attempt, through the decision-support system, to mobilize their network and align the imputed user (...)
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  35.  10
    Artificial intelligence as cognitive enhancement? From Decision Support Systems (DSSs) to Reflection machines.Zaida Espinosa Zárate - 2023 - Veritas: Revista de Filosofía y Teología 55:93-115.
    Resumen: El presente trabajo analiza si los Sistemas de apoyo a la decisión (DSSs) y otros asistentes para su uso, como las Reflection machines o los Personal Assistants that Learn (PAL), contribuyen de hecho a una mejora cognitiva, como habitualmente se tiende a asumir. Es decir, se examina si su potencial para expandir e impulsar la acción de las facultades cognoscitivas se ve efectivamente actualizado y, en consecuencia, si sirven para reafirmar el sentido capacitante de la IA y la extensión (...)
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  36.  31
    Improving rates of herpes zoster vaccination with a clinical decision support system in a primary care practice.Rajeev Chaudhry, Sidna M. Schietel, Fred North, Ramona Dejesus, Rebecca L. Kesman & Robert J. Stroebel - 2013 - Journal of Evaluation in Clinical Practice 19 (2):263-266.
  37.  11
    Precaution as a Risk in Data Gaps and Sustainable Nanotechnology Decision Support Systems: a Case Study of Nano-Enabled Textiles Production.Irini Furxhi, Finbarr Murphy, Craig A. Poland, Martin Cunneen & Martin Mullins - 2021 - NanoEthics 15 (3):245-270.
    In light of the potential long-term societal and economic benefits of novel nano-enabled products, there is an evident need for research and development to focus on closing the gap in nano-materials safety. Concurrent reflection on the impact of decision-making tools, which may lack the capability to assist sophisticated judgements around the risks and benefits of the introduction of novel products, is essential. This paper addresses the potential for extant decision support tools to default to a precautionary principle (...)
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  38.  13
    A comparative modeling approach to a large decision support system.Hean Lee Poh - 1992 - Knowledge, Technology & Policy 5 (3):50-66.
  39.  11
    Enhancing the Efficiency of a Decision Support System through the Clustering of Complex Rule-Based Knowledge Bases and Modification of the Inference Algorithm.Agnieszka Nowak-Brzezińska - 2018 - Complexity 2018:1-14.
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  40.  30
    Group decision process support system for regional planning—A perspective from Japan.Masao Hijikata - 1995 - AI and Society 9 (2-3):244-257.
    Regional planning has been regarded as a design activity. Usually planners focus on physical design rather than on societal issues. Nowadays, mass communication, environmental issues and social awareness lead to often complex and conflicting needs and interests of the public in regional planning. This paper focuses on the regional planning as a group problem solving process from the view of information processing. It offers an analysis of the causes of conflicts in the group decision process, and defines the characteristics (...)
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  41.  85
    Conception and realization of an IoT-enabled deep CNN decision support system for automated arrhythmia classification.James Kurian, Midhun Muraleedharan Sylaja & Ann Varghese - 2022 - Journal of Intelligent Systems 31 (1):407-419.
    Arrhythmias are irregular heartbeats that may be life-threatening. Proper monitoring and the right care at the right time are necessary to keep the heart healthy. Monitoring electrocardiogram patterns on continuous monitoring devices is time-consuming. An intense manual inspection by caregivers is not an option. In addition, such an inspection could result in errors and inter-variability. This article proposes an automated ECG beat classification method based on deep neural networks to aid in the detection of cardiac arrhythmias. The data collected by (...)
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  42. Engaging rational discrimination: Exploring reasons for placing regulatory constraints on decision support systems[REVIEW]Oscar H. Gandy - 2010 - Ethics and Information Technology 12 (1):29-42.
    In the future systems of ambient intelligence will include decision support systems that will automate the process of discrimination among people that seek entry into environments and to engage in search of the opportunities that are available there. This article argues that these systems must be subject to active and continuous assessment and regulation because of the ways in which they are likely to contribute to economic and social inequality. This regulatory constraint must involve limitations (...)
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  43. Toward case‐based reasoning for diabetes management: A preliminary clinical study and decision support system prototype.Cindy Marling, Jay Shubrook & Frank Schwartz - 2009 - In L. Magnani (ed.), Computational Intelligence. pp. 25--3.
     
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  44.  33
    Representing and using legal knowledge in integrated decision support systems: DataLex WorkStations.Graham Greenleaf, Andrew Mowbray & Peter van Dijk - 1995 - Artificial Intelligence and Law 3 (1-2):97-142.
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  45.  8
    Correction to: Precaution as a Risk in Data Gaps and Sustainable Nanotechnology Decision Support Systems: a Case Study of Nano‑Enabled Textiles Production.Irini Furxhi, Finbarr Murphy, Craig A. Poland, Martin Cunneen & Martin Mullins - 2022 - NanoEthics 16 (2):193-194.
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  46. Adapting a Microcomputer Marketing Game for Laboratory-Based Research in Marketing Decision Support Systems.M. R. Hyman - forthcoming - Philosophical Explorations.
     
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  47.  69
    Representing and using legal knowledge in integrated decision support systems: Datalex workstations. [REVIEW]Graham Greenleaf, Andrew Mowbray & Peter Dijk - 1995 - Artificial Intelligence and Law 3 (1-2):97-142.
    There is more to legal knowledge representation than knowledge-bases. It is valuable to look at legal knowledge representation and its implementation across the entire domain of computerisation of law, rather than focussing on sub-domains such as legal expert systems. The DataLex WorkStation software and applications developed using it are used to provide examples. Effective integration of inferencing, hypertext and text retrieval can overcome some of the limitations of these current paradigms of legal computerisation which are apparent when they are (...)
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  48.  43
    AI decision-support: a dystopian future of machine paternalism?David D. Luxton - 2022 - Journal of Medical Ethics 48 (4):232-233.
    Physicians and other healthcare professionals are increasingly finding ways to use artificial intelligent decision support systems in their work. IBM Watson Health, for example, is a commercially available technology that is providing AI-DDS services in genomics, oncology, healthcare management and more.1 AI’s ability to scan massive amounts of data, detect patterns, and derive solutions from data is vastly more superior than that of humans. AI technology is undeniably integral to the future of healthcare and public health, and (...)
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  49.  36
    Decision support for detecting sensitive text in government records.Karl Branting, Bradford Brown, Chris Giannella, James Van Guilder, Jeff Harrold, Sarah Howell & Jason R. Baron - forthcoming - Artificial Intelligence and Law:1-27.
    Freedom of information laws promote transparency by permitting individuals and organizations to obtain government documents. However, exemptions from disclosure are necessary to protect privacy and to permit government officials to deliberate freely. Deliberative language is often the most challenging and burdensome exemption to detect, leading to high processing costs and delays in responding to open-records requests. This paper describes a novel deliberative-language detection model trained on a new annotated training set. The deliberative-language detection model is a component of a (...)-support system for open-records requests under the US Freedom of Information Act, the FOIA Assistant, that ingests documents responsive to an open-records requests, suggests passages likely to be subject to deliberative language, privacy, or other exemptions, and assists analysts in rapidly redacting suggested passages. The tool’s interface is based on extensive human-factors and usability studies with analysts and is currently in operational testing by multiple US federal agencies. (shrink)
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  50.  48
    Human-centred decision support: The IDIOMS system. [REVIEW]J. G. Gammack, T. C. Fogarty, S. A. Battle, N. S. Ireson & J. Cui - 1992 - AI and Society 6 (4):345-366.
    The requirement for anthropocentric, or human-centred decision support is outlined, and the IDIOMS management information tool, which implements several human-centred principles, is described. IDIOMS provides a flexible decision support environment in which applications can be modelled using both ‘objective’ database information, and user-centred ‘subjective’ and contextual information. The system has been tested on several real applications, demonstrating its power and flexibility.
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